Conferences in Research and Practice in Information Technology
  

Online Version - Last Updated - 20 Jan 2012

 

 
Home
 

 
Procedures and Resources for Authors

 
Information and Resources for Volume Editors
 

 
Orders and Subscriptions
 

 
Published Articles

 
Upcoming Volumes
 

 
Contact Us
 

 
Useful External Links
 

 
CRPIT Site Search
 
    

A Dynamic Archive Based Niching Particle Swarm Optimizer Using a Small Population Size

Zhai, Z. and Li. X.

    Many niching techniques have been proposed to solve multimodal optimization problems in the evolutionary computing community. However, these niching methods often depend on large population sizes to locate many more optima. This paper presents a particle swarm optimiser (PSO) niching algorithm only using a dynamic archive, without relying on a large population size to locate numerous optima. To do this, we record found optima in the dynamic archive, and allow particles in converged sub-swarms to be re-randomized to explore undiscovered parts of the search space during a run. This algorithm is compared with lbest PSOs with a ring topology (LPRT). Empirical results indicate that the proposed niching algorithm outperforms LPRT on several benchmark multi- modal functions with large numbers of optima, when using a small population size.
Cite as: Zhai, Z. and Li. X. (2011). A Dynamic Archive Based Niching Particle Swarm Optimizer Using a Small Population Size. In Proc. Australasian Computer Science Conference (ACSC 2011) Perth, Australia. CRPIT, 113. Mark Reynolds Eds., ACS. 83-90
pdf (from crpit.com) pdf (local if available) BibTeX EndNote GS